Bant: Byzantine Antidote via Trial Function and Trust Scores

Authors

  • Gleb Molodtsov Moscow Independent Research Institute of Artificial Intelligence Basic Research of Artificial Intelligence Laboratory (BRAIn Lab) Federated Learning Problems Laboratory Innopolis University
  • Daniil Medyakov Moscow Independent Research Institute of Artificial Intelligence Basic Research of Artificial Intelligence Laboratory (BRAIn Lab) Federated Learning Problems Laboratory
  • Sergey Skorik Trusted AI Research Center, RAS
  • Nikolas Khachaturov Russian-Armenian University
  • Shahane Tigranyan Institute for Informatics and Automation Problems, NAS RA
  • Vladimir Aletov Moscow Independent Research Institute of Artificial Intelligence Basic Research of Artificial Intelligence Laboratory (BRAIn Lab) Federated Learning Problems Laboratory
  • Aram Avetisyan Trusted AI Research Center, RAS
  • Martin Takáč Mohamed bin Zayed University of Artificial Intelligence
  • Aleksandr Beznosikov Moscow Independent Research Institute of Artificial Intelligence Basic Research of Artificial Intelligence Laboratory (BRAIn Lab) Federated Learning Problems Laboratory Innopolis University

DOI:

https://doi.org/10.1609/aaai.v40i29.39625

Abstract

Recent advancements in machine learning have improved performance while also increasing computational demands. While federated and distributed setups address these issues, their structures remain vulnerable to malicious influences. In this paper, we address a specific threat: Byzantine attacks, wherein compromised clients inject adversarial updates to derail global convergence. We combine the concept of trust scores with trial function methodology to dynamically filter outliers. Our methods address the critical limitations of previous approaches, allowing operation even when Byzantine nodes are in the majority. Moreover, our algorithms adapt to widely used scaled methods such as Adam and RMSProp, as well as practical scenarios, including local training and partial participation. We validate the robustness of our methods by conducting extensive experiments on both public datasets and private ECG data collected from medical institutions. Furthermore, we provide a broad theoretical analysis of our algorithms and their extensions to the aforementioned practical setups. The convergence guaranties of our methods are comparable to those of classical algorithms developed without Byzantine interference.

Published

2026-03-14

How to Cite

Molodtsov, G., Medyakov, D., Skorik, S., Khachaturov, N., Tigranyan, S., Aletov, V., Avetisyan, A., Takáč, M., & Beznosikov, A. (2026). Bant: Byzantine Antidote via Trial Function and Trust Scores. Proceedings of the AAAI Conference on Artificial Intelligence, 40(29), 24431-24440. https://doi.org/10.1609/aaai.v40i29.39625

Issue

Section

AAAI Technical Track on Machine Learning VI